# Performing sum on a rdd int array

Is there any built in transformation to have sum on Ints of following rdd

``````org.apache.spark.rdd.RDD[(String, (Int, Int))]
``````

string is the key and Int array is Value, what i need is getting the sum of all Ints as `RDD[(String, Int)]` . I tried groupByKey with no success...

Also- The result set must be again a rdd.

If the objective is to sum elements of value (Int, Int), then a map transformation can achieve it:

``````val arr = Array(("A", (1, 1)), ("B", (2, 2)), ("C", (3, 3))

val rdd = sc.parallelize(arr)

val result = rdd.map{ case (a, (b, c)) => (a, b + c) }

// result.collect = Array((A,2), (B,4), (C,6))
``````

Instead if the value type is an Array, Array.sum can be used.

``````val rdd = sc.parallelize(Array(("A", Array(1, 1)),
("B", Array(2, 2)),
("C", Array(3, 3)))

rdd.map { case (a, b) => (a, b.sum) }
``````

Edit:

`map` transformation does not keep the original partitioner, as @Justin suggested `mapValues` may be more appropriate here:

``````rdd.mapValues{ case (x, y) => x + y }
rdd.mapValues(_.sum)
``````
• I would suggest changing this to `mapValues` to keep the hash partition that will most likely be in place – Justin Pihony Apr 8 '15 at 3:25
• is there a way of doing this in Java? – user171943 Aug 28 '17 at 21:57
• Note extra ) required – thebluephantom Feb 12 '18 at 20:09

Here are few ways in pyspark.

``````rdd = sc.parallelize([ ('A', (1,1)), ('B', (2,2)), ('C', (3, 3)) ])
rdd.mapValues(lambda (v1, v2): v1+v2).collect()
``````

Or

``````>>> rdd.map(lambda (k, v): (k, sum(v))).collect()
[('A', 2), ('B', 4), ('C', 6)]
``````

Or

``````>>> rdd.map(lambda (k, v): (k, (v + v))).collect()
[('A', 2), ('B', 4), ('C', 6)]
``````

Or

``````>>> def fn(x):
...   k_s = (x, sum(x))
...   print k_s
...
>>> rdd.foreach(fn)
('C', 6)
('A', 2)
('B', 4)
``````